TECHNICAL FIELD
[0001] Various aspects of this disclosure relate to a method for determining a risk of an
onset or progression of myopia over a timeframe. Various aspects of this disclosure
further relate to a system for determining a risk of an onset or progression of myopia
over a timeframe.
BACKGROUND
[0002] Myopia, a form of ametropia, is a condition of the human eye where the light that
comes in does not directly focus on the retina but in front of it, causing an image
that one sees to be out of focus when looking at a distant object, but in focus when
looking at a close object. Low myopia (e.g. > -5 D) and high myopia are both associated
with increasing risks of ocular pathologies, severe vision defects and in extreme
cases, blindness. Thus, myopia onset and control of myopia progression has become
a serious burden both in the clinical and research domains of eye care.
[0003] Myopia is a complex condition which involves many factors, and evaluating the progression
speed of myopia requires continuous follow-up over a long duration. In addition, predicting
the onset of myopia typically is highly complicated. Several models allow the prediction
of myopia onset and progression, but with poor accuracy and reliability. In particular,
these models fail to explain a large part of the variance observed in pre-myopic and
myopic populations, suggesting that an important factor is missing in these predictive
models.
[0004] Thus, it is desired to seek more accurate and reliable means to determine a risk
of myopia onset or progression over a timeframe, in pre-myopic and myopic populations.
SUMMARY
[0005] It is an object of the invention to provide methods and a system to accurately and
reliably determine a subject's risk of an onset or progression of myopia over a timeframe.
To this end, methods and a system are provided, in which determination of a subject's
risk of an onset or progression of myopia over a timeframe may be based on at least,
a determined value of a sensitivity parameter of a subject.
[0006] A first aspect of the disclosure concerns a method for determining a risk of an onset
or progression of myopia over a timeframe. The method includes determining a value
of at least one parameter associated with vision condition of a subject, said at least
one parameter comprising a sensitivity parameter of said subject, said sensitivity
parameter being relative to the sensitivity of said subject to a variation of at least
one dioptric optical feature of at least one ophthalmic lens placed in front of at
least one eye of said subject. The method also includes determining the subject's
risk of the onset or progression of myopia over the timeframe, based on the determined
value of the at least one parameter.
[0007] According to various embodiments, the at least one parameter associated with vision
condition of the subject may further include: a dioptric optical parameter, a parameter
relating to the subject's lifestyle, activity or behavior, a parameter relating to
the subject's genetic history, an optical biometric parameter, and/or a parameter
relating to personal information about the subject. In some embodiments, the parameters
associated with vision condition of the subject may include all the aforementioned
parameters and the sensitivity parameter of said subject.
[0008] According to various embodiments, determining the subject's risk of the onset or
progression of myopia over the timeframe, based on the determined value of the at
least one parameter may include assigning to each of the at least one parameter, a
respective risk category selected from a plurality of predetermined risk categories,
based on the determined value of the respective parameter, and may further include
determining the subject's risk of the onset or progression of myopia over the timeframe,
based on the respective risk category assigned to each of the at least one parameter.
[0009] According to various embodiments, assigning the respective risk category to each
of the at least one parameter based on the determined value of the respective parameter
may include determining if the determined value of the respective parameter matches
a corresponding reference value or lies within a corresponding reference value range,
for the respective parameter associated with the respective risk category.
[0010] According to various embodiments, the reference value or reference value range for
the respective parameter, may be established on the basis of a database comprising
information of the risk of myopia onset or progression over the timeframe, for individuals
within a population sample.
[0011] According to various embodiments, determining the subject's risk of the onset or
progression of myopia over the timeframe, based on the respective risk category assigned
to each of the at least one parameter may include determining, for each risk category
of the plurality of predetermined risk categories, the number of parameters among
the at least one parameter, to which the respective risk category has been assigned,
and may further include determining, as the subject's risk of the onset or progression
of myopia over the timeframe, that risk category of the plurality of predetermined
risk categories, that has been assigned to a highest number of parameters.
[0012] According to various other embodiments, determining the subject's risk of the onset
or progression of myopia over the timeframe, based on the respective risk category
assigned to each of the at least one parameter may include assigning, a weight to
each one of the plurality of predetermined risk categories, and determining, for each
risk category of the plurality of predetermined risk categories, the number of parameters
among the at least one parameter, to which the respective risk category has been assigned.
The method may further include calculating, for each risk category of the plurality
of predetermined risk categories, a score by multiplying the weight assigned to the
respective risk category with the number of parameters, to which said risk category
has been assigned, calculating, a final score by summing the scores calculated for
the plurality of predetermined risk categories, and determining, the subject's risk
of the onset or progression of myopia over the timeframe based on the final score.
[0013] According to various embodiments, determining the subject's risk of the onset or
progression of myopia over the timeframe based on the final score may include, comparing
the final score with at least one first predetermined threshold value.
[0014] According to various embodiments, the one or more predetermined risk categories may
include: a low-risk category, a moderate-risk category, and a high-risk category.
[0015] According to various embodiments, determining the subject's risk of the onset or
progression of myopia over the timeframe, based on the determined value of the at
least one parameter, may be established based on at least one predictive model based
on a machine learning algorithm, which provides a relationship between the risk of
myopia onset or progression and the at least one parameter.
[0016] According to various embodiments, determining the subject's risk of the onset or
progression of myopia over the timeframe, based on the determined value of the at
least one parameter may include entering the determined value of the at least one
parameter into the at least one predictive model based on the machine learning algorithm,
calculating a value of a risk ratio, using the at least one predictive model based
on the machine learning algorithm, and determining the subject's risk of the onset
or progression of myopia over the timeframe based on the calculated value of the risk
ratio. The calculated value of the risk ratio may provide a probability indicative
of the subject's risk of the onset or progression of myopia over the timeframe, and
may be carried out using the at least one predictive model based on the machine learning
algorithm.
[0017] According to various embodiments, determining the subject's risk of the onset or
progression of myopia over the timeframe based on the risk ratio may include, comparing
the calculated value of the risk ratio with a second predetermined threshold value.
[0018] According to various embodiments, the at least one parameter associated with vision
condition of said subject, may include a first parameter indicating a near refraction
of said subject, and a second parameter indicating a near refraction sensitivity of
said subject. The at least one parameter associated with vision condition of said
subject, may also include a third parameter indicating a far refraction of said subject
and a fourth parameter indicating a far refraction sensitivity of said subject. A
fifth parameter indicating an overlap degree of a far comfort range and a near comfort
range of said subject may be determined. Determining the value of the fifth parameter
may include determining the far comfort range and the near comfort range based on
the determined values of the first to fourth parameters, determining the overlap degree
of the far and near comfort ranges, and assigning a value to the fifth parameter based
on the determined overlap degree of the far and near comfort ranges.
[0019] According to various embodiments, determining the risk of the onset or progression
of myopia may include determining a likelihood of progression to a higher degree of
myopia, and/or a rate of progression of myopia.
[0020] According to various embodiments, the timeframe may be no more than about 6 months,
about 1 year, about 2 years, about 3 years, about 4 years, or no more than about 5
years.
[0021] A second aspect of the disclosure concerns a system for determining a risk of an
onset or progression of myopia over a timeframe. The system includes means for determining
a value of at least one parameter associated with vision condition of a subject, said
at least one parameter comprising a sensitivity parameter of said subject, said sensitivity
parameter being relative to the sensitivity of said subject to a variation of at least
one dioptric optical feature of at least one ophthalmic lens placed in front of at
least one eye of said subject. The system further includes means for determining the
subject's risk of the onset or progression of myopia over the timeframe, based on
the determined value of the at least one parameter.
[0022] According to various embodiments, at least one of the means for determining the value
of the at least one parameter, and the means for determining the subject's risk of
the onset or progression of myopia, may include a circuit. In some embodiments, the
means for determining the value of the at least one parameter, and the means for determining
the subject's risk of the onset or progression of myopia, may be the same circuit.
[0023] According to various embodiments, the system may further include a computer program
product including instructions to cause a computing system of the second aspect to
execute the steps of the method of the first aspect.
BRIEF DESCRIPTION OF THE DRAWINGS
[0024] The invention will be better understood with reference to the detailed description
when considered in conjunction with the non-limiting examples and the accompanying
drawings, in which:
- FIG. 1 shows an exemplary schematic illustration of method 100 for determining a risk
of an onset or progression of myopia over a timeframe, in accordance with various
embodiments;
- FIG. 2 shows an example of a subject's certitude probability function 200, which is
used to determine a value of the subject's sensitivity parameter SRx, in accordance
with various embodiments;
- FIG. 3 shows an exemplary schematic illustration of method 300 for determining a value
of a fifth parameter, indicating an overlap degree of the far comfort range and the
near comfort of the subject, in accordance with various embodiments;
- FIG. 4, 5A and 5B show exemplary schematic illustrations of methods 400, 500A, 500B
for determining the subject's risk of the onset or progression of myopia over the
timeframe, based on the determined value of the at least one parameter, in accordance
with various embodiments;
- FIG. 6 shows an exemplary schematic illustration of method 600 for determining the
subject's risk of myopia onset or progression over the timeframe, based on the determined
value of the at least one parameter, in accordance with various embodiments;
- FIG. 7 shows an example of a system 700 for determining a risk of an onset or progression
of myopia over a timeframe, in accordance with various embodiments;
- FIGS. 8A and 8B show tables of an example of a use condition of methods 400, 500A
and 500B, to determine the subject's risk of myopia onset or progression over a timeframe,
in accordance with various embodiments; and
- FIGS. 9A to 9C show tables of another example of a use condition of according to methods
300, 400, 500A and 500B, to determine the subject's risk of myopia onset or progression
over a timeframe, in accordance with various embodiments.
DETAILED DESCRIPTION
[0025] The following detailed description refers to the accompanying drawings that show,
by way of illustration, specific details and embodiments in which the disclosure may
be practiced. These embodiments are described in sufficient detail to enable those
skilled in the art to practice the disclosure. Other embodiments may be utilized and
structural, and logical changes may be made without departing from the scope of the
disclosure. The various embodiments are not necessarily mutually exclusive, as some
embodiments can be combined with one or more other embodiments to form new embodiments.
[0026] The disclosure illustratively described herein may suitably be practiced in the absence
of any element or elements, limitation or limitations, not specifically disclosed
herein. Thus, for example, the terms "comprising", "including," containing", etc.
shall be read expansively and without limitation. The word "comprise" or variations
such as "comprises" or "comprising" will accordingly be understood to imply the inclusion
of a stated integer or groups of integers but not the exclusion of any other integer
or group of integers. Additionally, the terms and expressions employed herein have
been used as terms of description and not of limitation, and there is no intention
in the use of such terms and expressions of excluding any equivalents of the features
shown and described or portions thereof, but it is recognized that various modifications
are possible within the scope of the disclosure. Thus, it should be understood that
although the present disclosure has been specifically described in exemplary embodiments
and optional features, modification and variation of the disclosure embodied herein
may be resorted to by those skilled in the art.
[0027] Features that are described in the context of an embodiment may correspondingly be
applicable to the same or similar features in the other embodiments. Features that
are described in the context of an embodiment may correspondingly be applicable to
the other embodiments, even if not explicitly described in these other embodiments.
Furthermore, additions and/or combinations and/or alternatives as described for a
feature in the context of an embodiment may correspondingly be applicable to the same
or similar feature in the other embodiments.
[0028] In the context of various embodiments, the articles "a", "an" and "the" as used with
regard to a feature or element include a reference to one or more of the features
or elements. As used herein, the term "and/or" includes any and all combinations of
one or more of the associated listed items.
[0029] The reference signs included in parenthesis in the claims are for ease of understanding
of the disclosure and have no limiting effect on the scope of the claims.
[0030] According to various embodiments, the term "myopia", as used herein, may refer to
a refractive error of a subject, and may be measured in diopters (D). The term myopia
may therefore include amongst others, axial myopia attributed to an increase in the
eye's axial length; refractive myopia attributed to the condition of the refractive
elements of the eye; curvature myopia attributed to excessive, or increased, curvature
of one or more of the refractive surfaces of the eye, especially the cornea, for example,
due to high corneal and lenticular power in a subject with Cohen syndrome; and index
myopia attributed to variation in the index of refraction of one or more of the ocular
media.
[0031] According to various embodiments, the term "risk", as used herein, may refer to a
likelihood, probability or possibility of an occurrence of a situation, for example,
an onset or progression of myopia for a subject over a timeframe. Accordingly, the
term "determining a risk" may refer to a process or methods to determine or predict
the likelihood or probability of an onset or progression of myopia for the subject
over a timeframe. According to various embodiments, determining the subject's risk
of the onset or progression of myopia over the timeframe may be for one eye, or for
both eyes of the subject.
[0032] According to various embodiments, the term "onset", as used herein, may refer to
the first occurrence or appearance of symptoms associated with myopia, such as reduced
visual acuity and intermittent blurred vision. Within the context of the disclosure,
the onset of myopia over a timeframe may refer to the first occurrence of such symptoms
for an emmetropic, e.g. pre- or non-myopic subject over a timeframe.
[0033] According to various embodiments, the term "progression", as used herein, may refer
to the worsening of myopia for a myopic subject over a timeframe. In other words,
the subject already has myopia. In particular, the term progression may refer to a
speed or rate of progression of myopia for a myopic subject over a timeframe, for
example, the progression from a spherical measurement of about -2.00 D to about -3.00
D, or to about -6.00 D, over a period. In another example, the term progression may
refer to the subject's progression from low myopia to moderate myopia or high myopia,
or from moderate myopia to high myopia.
[0034] According to various embodiments, the term "low myopia", as used herein, may correspond
to a spherical equivalent of -3.00 D or less negative; the term "moderate myopia",
as used herein, may correspond to a spherical equivalent between -3.00 D to -6.00
D; and the term "high myopia" may correspond to a spherical equivalent of -6.00 D
or more negative. The spherical equivalent may be a function of the sphere power,
e.g. myopia, and the cylinder power, e.g. astigmatism. For example, the spherical
equivalent may be equal to the sphere power + 0.5(cylinder power).
[0035] According to various embodiments, the term "value", as used herein, may refer to
as a numerical value, for example, a discrete numerical value or as a range of numerical
values. Alternatively, or in addition, the term "value" may refer to a text, e.g.
a string of text, for example,
"yes", "no", "overlap" or
"no overlap".
[0036] According to various embodiments, the term "parameter(s) associated with vision condition",
as used herein, may refer to parameters, e.g. factors, related to the visual condition
or system for a subject. Within the context of the disclosure, the term parameter(s)
associated with vision condition may include parameters which influence or causes
the onset or progression of myopia over a timeframe, for an emmetropic or myopic subject
respectively. For example, the parameter(s) associated with vision condition may include
genetic factors, environmental factors, or a combination thereof.
[0037] According to various embodiments, the term "subject", as used herein, may refer to
an emmetropic, i.e. non- or pre-myopic individual, and accordingly determining a risk
may refer to determining a risk of an onset of myopia over a timeframe for said emmetropic
individual. According to various other embodiments, the term "subject", as used herein,
may refer to a myopic or ametropic individual, and accordingly determining a risk
may refer to the determining a risk of progression of myopia over a timeframe for
said myopic individual.
[0038] According to various embodiments, the term "sensitivity parameter", as used herein,
may refer to a value of the subject's sensitivity parameter, e.g. personalized sensitivity
parameter. In some embodiments, the sensitivity parameter includes a specific sensitivity
parameter. For example, the specific sensitivity parameter may be selected from: sphere
sensitivity to the variation of sphere of at least one ophthalmic lens for at least
one of the eyes of the subject; cylinder and/or axis sensitivity to the variation
of cylinder power and/or axis of at least one ophthalmic lens for at least one of
the eyes of the subject; sphere binocular sensitivity to a variation in binocular
balance of at least one ophthalmic lens for at least one of the eyes of the subject;
addition sensitivity to the variation in the addition of at least one ophthalmic lens
placed in front of at least one eye of the subject. In some other embodiments, the
sensitivity parameter includes a global sensitivity parameter which refers to an average
value, or weighted average value of several single values of specific sensitivity
parameters.
[0039] FIG. 1 shows a schematic illustration of method 100 for determining a risk of an
onset or progression of myopia over a timeframe, by way of example. Method 100 includes
at step 110, determining a value of at least one parameter associated with the vision
condition of a subject. The at least one parameter associated with the vision condition
of a subject includes the sensitivity parameter SRx of said subject, the sensitivity
parameter SRx being relative to the sensitivity of said subject to a variation of
at least one dioptric optical feature of at least one ophthalmic lens placed in front
of at least one eye of said subject. Method 100 further includes at step 120, determining
the subject's risk of the onset or progression of myopia over the timeframe based
on determined value of the at least one parameter.
[0040] FIG. 2 shows an example of a subject's certitude probability function 200, which
is used to determine a value of the subject's sensitivity parameter SRx. The subject's
certitude probability function 200 may be represented as a graph of the certitude
of the choices made by the subject, as a function of the optical feature value of
the lens(es) placed in front of the eye(s) of the subject. The subject's certitude
probability function 200 is defined as the product of the subject's answers by the
probability of certitude as a function of the estimated parameter values, and may
be obtained based on the subject's choices relative to the variation of at least one
dioptric optical feature of at least one ophthalmic lens placed in front of at least
one eye of the subject. In other words, the subject's certitude probability function
200 reflects the certainty of the subject when making a choice between the two visual
states or between two different lenses placed successively in front of his eye. This
may be determined from a standard eye examination, e.g. Jackson Cross Cylinder procedure
with or without fixed Jackson cross cylinders, duo-chrome test, perceptual appreciation
test, binocular balance test, or other eye examination methods known to those skilled
in the art.
[0041] For example, the subject may be asked to choose between two visual states or two
different lenses placed successively in front of his eye, e.g. choice 1 and choice
2 on the certitude probability function 200. The 0 % certitude value is the value
obtained when the subject is unable to choose between the two visual states or the
two lenses, for example, when the subject is unable to perceive any difference in
the quality of the image seen in each visual state, e.g. choice 1 or choice 2. This
may be represented by the value "0", "don't know" or "null" during the eye examination.
The -100 % certitude value is the value obtained when the subject is certain that
the first of the two visual states, or that the first lens, e.g. choice 1, provides
a better quality of the image seen. This may be represented by value "-1" during an
eye examination. The +100 % certitude value is the value obtained when the subject
is certain that the second visual state, or the second lens, e.g. choice 2 provides
a better quality of the image seen, and may be represented by value "+1" during an
eye examination. Any uncertain answer may also be represented by a value between "-1
or +1" depending on the estimated or measured certitude.
[0042] The subject's certitude probability function 200 is then calculated by averaging
all the answers estimated for a particular optical feature value, and then interpolated
to any non-estimated value. An insensitive zone 210 may then be defined, corresponding
to the values of the optical feature of the lens of which probability of certitude
is comprised in a predetermined range of incertitude. In some embodiments, the range
of incertitude are the ranges [-70 %, 70 %], [-60 %, 60 %] or preferably [-50 %, 50
%] or [-40 %, 40 %]. In other words, the insensitive zone 210 is defined and limited
by a high level 220 and a low level 230 that are the 2 bounds for which the probability
of certitude is below the predetermined range, e.g. [-50 %, 50%].
[0043] The value of the sensitivity parameter SRx may then be defined to be equal to half
of the insensitive zone 210 size, as represented by Equation 1:

That is to say, the value of the sensitivity parameter SRx may correspond to the
value of certainty at 0 % of the subject's probability certitude function 200.
[0044] In other words, the insensitive zone 210 may correspond to the range of values of
the optical feature that could be acceptable for the subject, or which the subject
cannot decide which lens provides better vision. The value of the sensitivity parameter
SRx may then be determined from the subject's certitude probability function 200 as
the width of half of the insensitive zone 210 of the optical feature variation, for
which the subject is insensitive to the change in the value of the optical feature
of the lens placed in front of the subject's eye.
[0045] Methods for determining the value of the sensitivity parameter SRx are known from
document
WO 2020/016398. Methods for determining the certitude probability function are known from document
WO 2018/015381.
[0046] Lag of accommodation, e.g. the extent to which the eye(s) of the subject fails to
focus accurately in response to a visual stimulus, has been shown to strongly increase
after the onset of myopia and myopic subjects have been shown to have a lower sensitivity
to blur than emmetropes (
Rosenfield M. et al. Optom. Vis. Sci. 1999, 76(5): 303-307). Currently, optometric measurement methods such as the
"les optimales convexes et concaves" of the
"variations dioptriques" provide an estimation of the sensitivity parameter SRx. However, these optometric
measurement methods include additional tests with complex instructions which may not
be fully understood by the subject, in particular, a child. In accordance with various
embodiments, a subject's lag of accommodation may be related to the subject's insensitive
zone 210 on the subject's certitude probability function 200 and as such, the value
of the subject's sensitivity parameter SRx.
[0047] Advantageously, determining the value of the subject's sensitivity parameter SRx
based on the subject's certitude probability function 200 provides a direct and simple
way of determining the sensitivity parameter SRx in a precise and accurate manner
without the need for additional measurements or instructions that may be complex to
the subject, in particular, a young child.
[0048] Referring again to FIG. 1, step 110 of method 100 may further include determining
the value of at least one parameter associated with vision condition of the subject.
In accordance with various embodiment, the at least one parameter may further include:
a dioptric optical parameter, a parameter relating to the subject's lifestyle, activity
or behavior, a parameter relating to the subject's genetic history, an optical biometric
parameter, and/or a parameter relating to personal information about the subject.
[0049] According to various embodiments, the subject's dioptric optical parameter may include
an objective measurement of a subject's refractive error, e.g. spherical power obtained
during an eye examination. Said parameter may be obtained using any ophthalmic testing
device, e.g. phoropter, refractor, autorefractor and/or a retinoscope. As a further
example, the dioptric optical parameter may include or be the rate of myopia progression
in a previous timeframe, e.g. previous year, for a myopic subject, for instance from
low myopia to moderate myopia or high myopia in the previous year.
[0050] According to various embodiments, the parameter relating to the subject's lifestyle,
activity or behavior may include the subject's level of exposure to sufficient light.
For example, the parameter relating to the subject's lifestyle, activity or behavior
may include environmental factors such as the subject's level of physical activity,
duration of near work, and/or education level. In some embodiments, the parameter
relating to the subject's lifestyle, activity or behavior may be the duration the
subject spends outdoors per day, for example, engaging in physical exercise or in
outdoor play sessions. In some other embodiments, the parameter relating to the subject's
lifestyle, activity or behavior may be the average exposure to sunlight or natural
light per day, intensity of natural light exposure, average UV index, latitude, or
any combination thereof. Without wishing to be bound by theory, it has been observed
that insufficient light exposure, insufficient time spent outdoors per day, a prolonged
duration spent in near vision, and higher education levels increases the risk of the
onset or progression of myopia over a timeframe. Accordingly, the duration of time
spent outdoors has been associated with a protective effect against the development
of myopia which may be due, at least in part, to the effect of long hours of exposure
to daylight on the production and the release of retinal dopamine.
[0051] According to various embodiments, the parameter relating to the subject's genetic
history may include or be the number of myopic parents the subject has. In another
example, the parameter relating to the subject's genetic history may include the number
of myopic siblings the subject has, or be the number of myopic extended family members,
e.g. grandparents, the subject has. Without wishing to be bound by theory, a risk
for myopia onset and progression over a timeframe may be inherited from one's parents,
and a family history of myopia has been shown to be correlated with an increased risk
of myopia onset or progression over a timeframe.
[0052] According to various embodiments, the optical biometric parameter may include an
objective measurement of a subject's axial length (in mm), vitreous chamber depth
(in mm), choroidal thickness (in µm), and may further include other corneal characteristics,
including corneal hysteresis. Said parameter may be obtained during an eye examination
and using any ophthalmic testing device, e.g. phoropter, refractor, autorefractor
and/or a retinoscope.
[0053] According to various embodiments, the parameter relating to personal information
about the subject may include or be the subject's gender, age, ethnicity, or combinations
thereof. It is further envisioned that the parameter relating to the subject's personal
information may also include underlying medical conditions such as diabetes, childhood
arthritis, uveitis, and systemic lupus erythematosus. It has been observed that myopia
is more common in individuals, e.g. children with said medical conditions.
[0054] Thus, step 110 of method 100 may include determining the value of the at least one
parameter associated with vision condition of the subject, which may include the subject's
sensitivity parameter SRx, the subject's dioptric optical parameter, the parameter
relating to the subject's lifestyle, activity or behavior, the parameter relating
to the subject's genetic history, the optical biometric parameter and/or the parameter
relating to personal information about the subject. In some embodiments, step 110
of method 100 includes determining the value of all the aforementioned parameters
associated with vision condition of the subject.
[0055] According to various embodiments, the at least one parameter associated with vision
condition of the subject may also include a fifth parameter, indicative of an overlap
degree of subject's far comfort range and near comfort range.
[0056] FIG. 3 shows a schematic illustration of method 300 for determining a value of a
fifth parameter, indicating an overlap degree of the far comfort range and the near
comfort of the subject, by way of example. At step 310, method 300 may include determining
a first parameter indicating a near refraction of the subject. For example, the first
parameter, e.g. subject's near refraction, may correspond to the subject's near prescription
and may be obtained during the subject's eye examination. Step 310 may also include
determining a third parameter indicating a far refraction of the subject. For example,
the third parameter, e.g. subject's far refraction, may correspond to the subject's
far prescription, obtained during the subject's eye examination.
[0057] Step 320 of method 300 may include determining a second parameter indicating a near
refraction sensitivity of the subject, and may further include determining a fourth
parameter indicating a far refraction sensitivity of the subject. The near and far
refraction sensitivity may be determined using the subject's near and far certitude
probability functions, respectively. The method to determine the subject's near and
far certitude probability functions may be the same as the method used to obtain the
subject's sensitivity parameter SRx, which has been explained above with reference
to FIG. 2. Briefly, the subject's near and far certitude probability function may
be calculated by averaging the answers estimated for a particular optical feature
value, e.g. near and far prescription, respectively. The near and far prescription
certitude probability function may then be interpolated to any non-estimated value.
A near and far insensitive zone may be defined on the subject's near and far certitude
probability function, respectively. The near and far insensitive zones may correspond
to the values of the optical feature of the lens of which probability of certitude
is comprised in a predetermined range of incertitude, e.g. [-50 %, 50 %]. In other
words, the near and far refraction insensitive zone may be defined and limited by
a high level and a low level on the near or far certitude probability function, respectively,
that are the 2 bounds for which the probability of certitude is below the predetermined
range, e.g. [-50 %, 50%]. The value of the near or far refraction sensitivity, e.g.
second and fourth parameter, respectively, may then be defined to be equal to half
of the near or far insensitive zone size. Alternatively, the near and far refraction
sensitivity, e.g. second and fourth parameters, may be defined as being both equal
to the global sensitivity parameter, which may be calculated from various specific
sensitivity parameters SRx measured in either, e.g. near or far conditions, or both,
e.g. near and far conditions.
[0058] In some embodiments, either the near refraction sensitivity, e.g. second parameter,
or the far refraction sensitivity, e.g. fourth parameter may be measured, and either
parameter may be used to determine the subject's risk of the onset or progression
of myopia over the timeframe, e.g. via a predictive model which provides a relationship
between the risk of myopia onset or progression and the second or fourth parameter.
Accordingly, the time taken to perform the measurement and obtain the second or fourth
parameter may be advantageously be shortened. For example, with a small child, the
time taken to perform the measurement may be a relevant criterion. In some other embodiments,
both the near and far refraction sensitivity, e.g. second and fourth parameters may
be measured and used to determine the subject's risk of the onset or progression of
myopia over the timeframe.
[0059] At step 330, method 300 may include determining a near comfort range which may be
determined based on the subject's near prescription, e.g. first parameter, and near
refraction sensitivity, e.g. second parameter, obtained at steps 310 and 320, respectively.
The near comfort range may be calculated according to Equation 2:

[0060] In Equation 2, the coefficient (
K_near) may represent a subject specific, e.g. personalized coefficient. An associated confidence
interval for the near comfort range is given by 2 ×
K_near ×
near refraction sensitivity. The coefficient
K_
near and associated confidence interval may depend on the width of the function, e.g.
Gaussian function, of the near refraction sensitivity, e.g. second parameter. In some
embodiments, a 95 % confidence interval may be used. In this case,
K_near may be 1.96 under the assumption of a Gaussian distribution for the near refraction
sensitivity. Alternatively, other confidence intervals, such as 50 %, 90 %, 98 % or
99 % may be used.
[0061] Step 330 of method 300 may also include determining the far comfort range, in a similar
manner as that of the near comfort range. The far comfort range may be based on the
far prescription, e.g. third parameter, and far refraction sensitivity, e.g. fourth
parameter obtained at steps 310 and 320, respectively. The far comfort range may be
calculated according to Equation 3:

In Equation 3, the coefficient (
K_far) may represent a subject specific, e.g. personalized coefficient. An associated confidence
interval for the far comfort range is given by 2 ×
K_far ×
far refraction sensitivity. The coefficient
K_far and associated confidence interval may depend on the width of the function, e.g.
Gaussian function, of the far refraction sensitivity, e.g. fourth parameter. In some
embodiments, a 95 % confidence interval may be used. In this case,
K_far may be 1.96 under the assumption of a Gaussian distribution for the near refraction
sensitivity. Alternatively, other confidence intervals, such as 50 %, 90 %, 98 % or
99 % may be used.
[0062] Step 340 of method 300 may include determining an overlap degree of the near and
far comfort ranges. In other words, step 340 includes determining if the far comfort
range overlaps with the near comfort range. In some embodiments, if it is determined
that the far and near comfort ranges overlap, step 340 may further include determining
if the far refraction, e.g. third parameter determined at step 310, lies within the
near comfort range, determined at step 330.
[0063] At step 350, method 300 may include assigning a value to a fifth parameter indicating
the overlap degree of the near and far comfort ranges, which may be determined at
step 340. For example, values that may be assigned to the fifth parameter may include
but are not limited to:
"no overlap", "overlap", "overlap butfar refraction not in near comfort zone". Alternatively, the value that may be assigned to the fifth parameter may include
the percentage overlap degree of the near and far comfort ranges.
[0064] As indicated above, the at least one parameter associated with vision condition may
include the fifth parameter indicating the overlap degree of a far comfort range and
near comfort range, which may be determined using method 300. Without wishing to be
bound by theory, it has been observed that if the far and near comfort ranges overlap,
the subject has a low risk of myopia onset or progression over a timeframe. Conversely,
if the far and near comfort ranges do not overlap, the subject is at significant risk
of developing myopia, for example, at significant risk of myopia onset for a pre-myopic
subject over a timeframe, or at a significant risk of progression to a higher degree
of myopia over a timeframe (
Drobe B. et al. Ophthal. Physiol. Opt. 1995, 15, 375-378). Thus, the fifth parameter may provide an additional factor to improve the prediction
power of existing or new myopia onset or progression models.
[0065] In non-limiting embodiments, examples of parameters associated with the subject's
vision conditions may further include parameters relating to the visual aptitudes
or to the visual deficiency of the subject, for example, hypermetropia, astigmatism,
presbyopia, or any other visual disease such as ocular diseases that result in visual
issues such as myopic macular degeneration, retinal detachment and glaucoma.
[0066] Step 120 of FIG. 1 includes determining the subject's risk of onset or progression
of myopia over a timeframe based on the determined value of the aforementioned at
least one parameter associated with vision condition of the subject.
[0067] According to various embodiments, determining the subject's risk of the onset or
progression of myopia may include determining a likelihood of progression to a higher
degree of myopia within a timeframe. The likelihood of progression may be expressed
in the form of the risk ratio, e.g. percentage or ratio, or may be expressed as categorical
risk, e.g. low-risk, moderate- risk or high-risk of progressing to a higher degree
of myopia. In some embodiments, the higher degree of myopia may include low myopia,
moderate myopia, or high myopia. For example, for an emmetropic subject, determining
the subject's risk of the onset or progression may include determining the subject's
risk of progression from being non-myopic to low myopia over a timeframe. As a further
example, for the emmetropic subject, determining the subject's risk may include predicting
the age at which the subject may develop myopia. In another example, for a myopic
subject, determining the subject's risk of the onset or progression may include determining
the subject's risk of progression to a higher degree of myopia, for instance, from
low myopia to moderate myopia or to high myopia, within a timeframe. As a further
example, for the myopic subject, determining the subject's risk includes predicting
the age at which the subject progresses from low myopia to moderate myopia or high
myopia.
[0068] According to various embodiments, determining the subject's risk of the onset or
progression of myopia may include determining a rate of progression of myopia. The
rate of progression may include predicting a change in the degree of myopia within
a timeframe. The predicted change in degree of myopia may be about 1 D or less, about
1 to 2 D, about 2 to 3 D, about 3 to 4 D, about 4 to 5 D, about 5 to 6 D, about 6
to 7 D, about 7 to 8 D, about 8 to 9 D, or about 9 to 10 D.
[0069] According to various embodiments, determining the subject's risk of the onset or
progression of myopia is over, i.e. relative to, a timeframe. The timeframe for predicting
the subject's risk of the onset or progression of myopia may be the same timeframe
for which the database comprising information on the risk of myopia onset or progression
is established on, e.g. timeframe of the longitudinal study, as will be explained
below. For example, the timeframe may include but is not limited to about 6 months,
about 1 year, about 2 years, about 3 years, about 4 years, about 5 years, about 8
years, or about 10 years. In some embodiments, the timeframe is no more than 5 years.
That is to say, the probability of the subject's progression to a higher degree of
myopia, and/or a rate of progression of myopia is established relative to the indicated
timeframe.
[0070] Referring again to step 120 of FIG. 1, determining the subject's risk of the onset
or progression of myopia over the timeframe, based on the determined value of the
at least one parameter, may be established based on at least one predictive model
which provides a relationship between the risk of myopia onset or progression and
the at least one parameter, in accordance with various embodiments. In other words,
the subject's risk of the onset or progression of myopia over the timeframe may be
implemented and determined using a predictive model, which may be implemented using
a machine learning algorithm. For example, one or more neural networks may be trained
by inputting a series of determined values of the parameter associated with vision
condition of numerous individuals, e.g. population sample, which may have the same
or similar profile, e.g. sensitivity parameter SRx, age, genetic history, dioptric
optical parameter, and building a correlation table or any database containing information
on the relationship between the risk of myopia onset or progression and the at least
one parameter associated with vision condition. In an embodiment, said database or
correlation table may include or be the longitudinal study which established the correlation
of the risk of myopia onset or progression over a timeframe and the at least one parameter
associated with vision condition.
[0071] According to various embodiments, the machine learning algorithm may be selected
from the group consisting of supervised, semi-supervised and unsupervised learning,
for example: a support vector machine (SVM), a Naive Bayes classification, a random
forest, an artificial neural network, a decision tree, a K-means, learning vector
quantization, self-organizing maps, graphical models, preferably, regression algorithms,
e.g. linear, multi-variate, logistic, association rule learning, deep learning, dimensionality
reduction and ensemble selection algorithms.
[0072] In a non-limiting embodiment, it is envisioned that the self-reported parameter may
be amounted for by the at least one predictive model. For example, self-reported parameters
include data from social networks or the genetic risk score related to a visual deficiency
or disease. Such self-reported parameters will in turn modify the prediction model.
[0073] Methods for building the at least one predictive model based on the machine learning
algorithm may be known from
WO 2020/126513.
[0074] FIG. 4 to 5B show schematic illustrations of methods 400, 500A and 500B for determining
the subject's risk of the onset or progression of myopia over the timeframe, based
on categorical risk, in accordance with various embodiments of the invention. In other
words, the predictive model for determining the subject's risk of myopia onset or
progression over a timeframe may include or be a categorical model. Specifically,
the predictive model may include one or more predetermined risk categories, including
at least, a low-risk category, a moderate-risk category, and a high-risk category.
[0075] According to various embodiments, each of the predetermined risk categories includes
a reference value, or reference value range associated with the respective parameter.
For example, the low-risk, moderate-risk, and high-risk categories each include a
reference value or reference value range connected to the at least one parameter associated
with vision condition of the subject, e.g. the sensitivity parameter SRx, the dioptric
optical parameter, the parameter relating to the subject's lifestyle, activity or
behavior, the parameter relating to the subject's genetic history, the optical biometric
parameter, the parameter relating to personal information about the subject, and/or
the fifth parameter indicating the overlap degree of the subject's near and far comfort
zone.
[0076] According to various embodiments, the term "individuals within a population sample",
as used herein, may refer to a group, e.g. any number of individuals who may share
at least one common characteristic with each other. For example, the individuals within
the population sample may share a same or similar dioptric optical parameter, age,
ethnicity, genetic history, lifestyle, activity or behavior, optical biometric parameter,
sensitivity parameter SRx, and/or parameter including information on the overlap degree
of the near and far comfort ranges.
[0077] According to various embodiments, the reference value or reference value range may
be established on the basis of a database comprising information of the risk of myopia
onset or progression over the timeframe, for individuals within a population sample.
For example, the database may be established based on longitudinal studies of the
risk of myopia onset or progression over a period of time, for individuals within
a population sample, e.g. children under the age of 12 years old. The database may
thus include information linking the risk of myopia onset or progression over the
timeframe with a specific parameter associated with vision condition, for instance,
the sensitivity parameter SRx, the fifth parameter indicating the overlap degree of
the subject's near and far comfort zones, the dioptric optical parameter, the parameter
relating to the individual's genetic history, the optical biometric parameter, and
the parameter relating to the individual's lifestyle, activity or behavior.
[0078] FIG. 4 shows a schematic illustration of method 400 for determining the subject's
risk of the onset or progression of myopia over the timeframe, based on the determined
value of the respective parameter, by way of example. At step 410, method 400 includes
determining if the determined value of the respective parameter, obtained at step
110 of FIG. 1, matches a corresponding reference value or lies within a corresponding
reference value range, for the respective parameter associated with the respective
risk category. For example, step 410 may include determining if the determined value
of the sensitivity parameter SRx, is equal to a corresponding reference value or falls
within a corresponding reference value range, for the reference value range of the
sensitivity parameter SRx for each of the low-risk category, the moderate-risk category,
and the high-risk category. Said reference value, or reference value range may be
established from the database comprising information of the risk of myopia onset or
progression over the timeframe for individuals within the population sample. In other
words, the low-risk, moderate-risk, and high-risk categories each include a reference
value or reference value range for each parameter associated with vision condition,
and step 410 includes determining if the determined value of the parameter associated
with vision condition of the subject is equal to the reference value, or falls within
the reference value range.
[0079] Step 420 of method 400 may include assigning to each of the at least one parameter,
a risk category selected from a plurality of predetermined risk categories, based
on step 410, which may include determining if the determined value of the respective
parameter matches a corresponding reference value or lies with the corresponding reference
value range for the respective parameter associated with the respective risk category.
For example, if the determined value of the respective parameter matches the corresponding
reference value or lies within the corresponding reference value range for the respective
risk category, the parameter may be assigned to the respective risk category. That
is to say, if the determined value of the parameter, e.g. sensitivity parameter SRx,
is equal to or falls within the respective reference value range of the low-risk,
moderate-risk, or high-risk categories, the parameter will be assigned to that category.
[0080] Step 430 of method 400 may include, determining the subject's risk of the onset or
progression of myopia over the timeframe, based on the respective risk category assigned
to each of the at least one parameter, as will be explained with reference to FIGS.
5A and 5B.
[0081] FIG. 5A shows a schematic illustration of an exemplary method 500A for determining
the subject's risk of the onset or progression of myopia over the timeframe, based
on the respective risk category assigned to each of the at least one parameter. In
an embodiment, determining the subject's risk of the onset or progression of myopia
over the timeframe may include, at step 510, determining for each risk category of
the plurality of predetermined risk categories, the number of parameters among the
at least one parameter, to which the respective risk category has been assigned. In
other words, step 510 includes determining the total number of parameters within each
of the low-risk, moderate-risk, and high-risk categories. For example, the predictive
model may include instructions to calculate the sum of the, e.g. total number of parameters
within each of the low-risk, moderate-risk and high-risk categories.
[0082] Method 500A may further include, at step 512, determining, as the subject's risk
of the onset or progression of myopia over the timeframe, that risk category of the
plurality of predetermined risk categories, that has been assigned to a highest number
of parameters. That is to say, step 512 includes comparing the total number of parameters
within each of the predetermined risk categories, e.g. compare total number of parameters
between each of the low-risk, moderate-risk and high-risk categories, and determining
as the subject's risk of onset or progression of myopia over the timeframe, the specific
risk category with the highest total number of parameters. For example, if the low-risk
category includes 2 parameters that fall within said category, and the moderate-risk
and high-risk categories each include 1 parameter, the subject's risk of the onset
or progression of myopia over the timeframe may be determined as being of low-risk.
[0083] FIG. 5B shows a schematic illustration of another method 500B for determining the
subject's risk of the onset or progression of myopia over the timeframe, based on
the respective risk category assigned to each of the at least one parameter, by way
of example. In another embodiment, determining the subject's risk of the onset or
progression of myopia over the timeframe may include, at step 520, assigning a weight
to each one of the plurality of predetermined risk categories. For example, a quantitative,
e.g. numerical value may be assigned to each of the low-risk, moderate-risk, and high-risk
categories. As a further example, the low-risk category may be assigned a weight of
"
0", the moderate-risk category assigned a weight of "1", and the high-risk category
assigned a weight of "2".
[0084] Method 500B may also include at step 522, determining for each risk category of the
plurality of predetermined risk categories, the number of parameters among the at
least one parameter, to which the respective risk category has been assigned. Step
522 may be the same as step 510 of method 500A. Repeated descriptions are omitted
for brevity. Briefly, step 522 includes determining the total number of parameters
within each of the low-risk, moderate-risk, and high-risk categories.
[0085] Step 524 of method 500B may include, calculating, for each risk category of the plurality
of predetermined risk categories, a score by multiplying the weight assigned to the
respective risk category with the number of parameters, to which said risk category
has been assigned. For example, the score for each of the low-risk, moderate-risk,
and high-risk categories may be calculated by multiplying the weight assigned to the
respective risk category (at step 520) by the total number of parameters assigned
to the respective risk category (at step 522).
[0086] Step 526 of method 500B may then include calculating a final score by summing the
scores calculated for the plurality of predetermined risk categories. For example,
the final score is calculated by adding the individual scores determined at preceding
step 524 for each of the low-risk, moderate-risk, and high-risk categories.
[0087] To determine the subject's risk of the onset or progression of myopia over the timeframe,
method 500B may include, at step 528, comparing the final score to at least one first
predetermined threshold value. The first predetermined threshold value may be established
on the basis of the database including information on the risk of myopia onset or
progression over the timeframe for individuals within the population sample. For example,
the final score may be compared to the at least one first predetermined threshold
value, e.g. for that of the low-risk category, moderate-risk category and high-risk
category, and may include determining if the final score is equal to, greater than,
or less than the at least one first predetermined threshold value.
[0088] Step 530 of method 500B may then include determining the subject's risk of myopia
onset or progression over the timeframe based on the comparison of the final score
to the at least one first predetermined threshold value. For example, if it is determined
in preceding step 528 that the final score is equal to or greater than the first predetermined
threshold value of the high-risk category, the subject's risk of myopia onset or progression
over the timeframe may be determined as being of high-risk.
[0089] FIG. 6 shows a schematic illustration of method 600 for determining the subject's
risk of myopia onset or progression over the timeframe based on the determined value
of the at least one parameter, by way of example, and in accordance with various embodiments.
Method 600 may include, at step 610, entering the determined value of the at least
one parameter (at step 110) into the at least one predictive model based on the machine
learning algorithm. For example, step 610 may include inputting amongst others, the
determined value of the sensitivity parameter SRx, and/or the fifth parameter indicating
the overlap degree of the subject's far and near comfort zones, into the predictive
model based on the machine learning algorithm.
[0090] Method 600 may also include, at step 620, calculating a value of a risk ratio, using
the at least one predictive model based on the machine learning algorithm. As mentioned
above, the machine learning algorithm may include a correlation table or any database
including information on the relationship between the risk of myopia onset or progression
over the timeframe and the at least one parameter associated with vision condition.
According to various embodiments, the value of the risk ratio may be calculated based
on the machine learning algorithm. For example, the machine learning algorithm may
include a multifactorial equation correlating the risk of myopia onset or progression
over the timeframe and the respective at least one parameter associated with vision
condition, for individuals within a population sample. Accordingly, the calculated
value of the risk ratio determined at step 620, provides a probability indicative
of the subject's risk of the onset or progression of myopia over the timeframe, and
is carried out using the at least one predictive model based on the machine learning
algorithm.
[0091] At step 630, method 600 may include determining the subject's risk of the onset or
progression of myopia over the timeframe based on the calculated value of the risk
ratio. For example, the calculated value of the risk ratio may be expressed as a risk
percentage (%) that provides an indicative probability of the subject's risk of myopia
onset or progression over the timeframe. As a further example, the risk ratio may
be expressed as being a value ranging from 0 to 100, or alternatively from 0.0 to
1.0, over a timeframe.
[0092] In some embodiments, method 600 may include an additional step 640, which includes
comparing the calculated value of the risk ratio with a second predetermined threshold
value. The second predetermined threshold value may be established on the basis of
the database including information on the risk of myopia onset or progression over
the timeframe for individuals within the population sample. In an example, the second
predetermined threshold value may be a threshold value that indicates that the subject
may be at a moderate, or high risk of myopia onset or progression.
[0093] In accordance with various embodiments, the methods 100, 300, 400, 500A, 500B and
600 for determining the subject's risk of the onset or progression of myopia over
the timeframe may be based on at least one predictive model based on a machine learning
algorithm which provides a relationship between the risk of myopia onset or progression
and the respective parameter, as explained above. In some embodiments, the risk may
be determined as categorical risk, e.g. as low-risk, moderate-risk or high-risk. Alternatively,
the risk may be determined as continuous risk, e.g. as a percentage or risk ratio.
In some embodiments, the subject's risk of the onset or progression of myopia over
the timeframe may include both categorical and continuous risk.
[0094] FIG. 7 shows an example of a system 700 for determining a risk of an onset or progression
of myopia over a timeframe. System 700 includes means for determining a value of at
least one parameter associated with vision condition of the subject 710, which may
include at least one circuit, e.g. microprocessor(s). For example, the means for determining
a value of at least one parameter associated with vision condition of the subject
710 may include any ophthalmic testing device, such as a computer-controlled machine
used during an eye examination to provide an objective measurement of the subject's
refractive error, e.g. phoropter, refractor, autorefractor and/or a retinoscope. For
instance, the ophthalmic testing device may be used to determine the subject's dioptric
optical parameter, the first parameter and third parameters indicating the near and
far refraction, respectively, of the subject.
[0095] According to various embodiments, the means for determining a value of at least one
parameter associated with vision condition of the subject 710 also includes determining
the subject's sensitivity parameter SRx, said sensitivity parameter SRx being relative
to the sensitivity of said subject to a variation of at least one dioptric optical
feature of at least one ophthalmic lens placed in front of at least one eye of said
subject. Thus, the at least one circuit may be configured, e.g. include instructions,
to determine the value of sensitivity parameter SRx. In some embodiments, the at least
one circuit may further determine the second parameter indicating the near refraction
sensitivity of the subject, the fourth parameter indicating the far refraction sensitivity
of the subject, and the fifth parameter indicating the overlap degree of the far and
near comfort ranges of the subject. Methods for determining the value of the sensitivity
parameter SRx, and the second, fourth and fifth parameters have been explained above
and repeated descriptions are omitted for brevity.
[0096] According to various embodiments, means for determining a value of at least one parameter
associated with vision condition of the subject 710 may also be configured to receive
the other parameters associated with vision condition of the subject. For example,
the means for determining a value of at least one parameter associated with vision
condition of the subject 710 may include an interface 712 configured to receive the
subject's input. As a further example, the interface 712 may be a display on the means
for determining a value of at least one parameter associated with vision condition
of the subject 710, e.g. microprocessor. As such, the subject (or third party) may
input the other parameters associated with vision condition, for instance parameters
relating to the subject's lifestyle, activity or behavior, parameters relating to
the subject's genetic history, the optical biometric parameter, and/or parameters
relating to the subject's personal information.
[0097] According to various embodiments, a circuit may include analog circuits or components,
digital circuits or components, or hybrid circuits or components. Any other kind of
implementation of the respective functions which will be described in more detail
below may also be understood as a "circuit" in accordance with an alternative embodiment.
A digital circuit may be understood as any kind of a logic implementing entity, which
may be special purpose circuitry or a processor executing software stored in a memory,
firmware, or any combination thereof. Thus, in various embodiments, a "circuit" may
be a digital circuit, e.g. a hard-wired logic circuit or a programmable logic circuit
such as a programmable processor, e.g. a microprocessor (e.g. a Complex Instruction
Set Computer (CISC) processor or a Reduced Instruction Set Computer (RISC) processor).
A "circuit" may also include a processor executing software, e.g. any kind of computer
program, e.g. a computer program using a virtual machine code such as e.g. Java.
[0098] System 700 further includes means for determining the subject's risk of the onset
or progression of myopia over a timeframe 720, based on the determined value of the
at least one parameter. Said means for determining the subject's risk of the onset
or progression of myopia over a timeframe 720 may include at least one circuit configured
to perform the steps of methods 400, 500A, 500B and 600. According to various embodiments,
the means for determining the subject's risk of the onset or progression of myopia
over a timeframe 720, e.g. circuit or microprocessor, may include a computer program
or instructions. In one example, the computer program or instructions may be executed
to perform the steps of methods 400, 500A, 500B, to determine if the subject's risk
of myopia onset or progression over a timeframe is of the low-risk, moderate-risk,
or high-risk category. In another example, the instructions may be executed to perform
the steps of method 600, to calculate the value of the risk ratio which provides a
probability indicative of the subject's risk of myopia onset or progression over the
timeframe. According to various embodiments, the computer program or instructions
may be implemented in the at least one predictive model based on the machine learning
algorithm.
[0099] According to various embodiments, the means for determining the value of the at least
one parameter associated with vision condition of the subject 710 and the means for
determining the subject's risk of the onset or progression 720 may include a circuit,
e.g. microprocessor. In an embodiment, the means for determining the value of the
at least one parameter associated with vision condition of the subject 710 and the
means for determining the subject's risk of the onset or progression 720 may be implemented
in the same circuit, e.g. microprocessor. For example, the means for determining the
subject's risk of the onset or progression 720, for instance, the instructions and
computer program to execute the steps of methods 400, 500A, 500B and 600 may be implemented
in the same circuit as the means for determining the value of the at least one parameter
associated with vision condition of the subject 710 to execute step 110 of method
100 and 300. As a further example, the means for determining the subject's risk of
the onset or progression 720 may be implemented in the ophthalmic testing device used
to determine the value of the of the at least one parameter associated with vision
condition of the subject 710.
[0100] Advantageously, including the means for determining the value of the at least one
parameter associated with vision condition of the subject 710 and the means for determining
the subject's risk of the onset or progression over the timeframe 720 in the same
circuit, provides a direct and simple way of determining said subject's risk. For
example, the operator operating the circuit does not need to perform any additional
steps to determine said risk.
[0101] In some embodiments, the means for determining the value of the at least one parameter
associated with vision condition of the subject 710 and the means for determining
the subject's risk of the onset or progression 720 may each include a circuit. In
other words, the means for determining the value of the at least one parameter associated
with vision condition of the subject 710 and the means for determining the subject's
risk of the onset or progression 720 may be implemented in separate circuits. For
example, the means for determining the value of the at least one parameter associated
with vision condition of the subject 710 may be obtained and calculated on an ophthalmic
testing device, and the means for determining the subject's risk of the onset or progression
720 may be implemented on another microprocessor. In this embodiment, the determined
value of the at least one parameter associated with vision condition of the subject,
obtained at step 110, may be transmitted according to a pre-defined wireless communication
protocol to the circuit to determine the subject's risk of the onset or progression
of myopia over the timeframe 720. Examples of the pre-defined wireless communication
protocols include: global system for mobile communication (GSM), enhanced data GSM
environment (EDGE), wideband code division multiple access (WCDMA), code division
multiple access (CDMA), time division multiple access (TDMA), wireless fidelity (Wi-Fi),
voice over Internet protocol (VoIP), worldwide interoperability for microwave access
(Wi-MAX), Wi-Fi direct (WFD), an ultra-wideband (UWB), infrared data association (IrDA),
Bluetooth, ZigBee, SigFox, LPWan, LoRaWan, GPRS, 3G, 4G, LTE, and 5G communication
systems. Accordingly, each of the circuits may include the necessary hardware required
to support the wireless transmission. Alternatively, it is envisioned that the determined
value of the at least one parameter associated with vision condition of the subject
may be transmitted via wired means.
[0102] According to various embodiments, a computer program product may include instructions
to cause the system 700 to execute the steps of methods 100, 300, 400, 500A, 500B
and 600. The steps of methods 100, 300, 400, 500A, 500B and 600 may be used to determine
the subject's risk of onset or progression of myopia over the timeframe.
[0103] According to various embodiments, the methods and system of the present invention
may further include providing a recommendation for mitigating the risk for the non-myopic
or myopic subject. For example, mitigation options may be recommended if it is determined
that the subject has a moderate-risk or high-risk of myopia onset, or a fast or high
rate of progression of myopia over a timeframe. The mitigation options may include
but are not limited to: lens(es) configured to control myopia progression; atropine
eye drops; orthokeratology; multifocal soft contact lenses; spectacle lenses designed
to slow the progression of myopia; a change in the subject's lifestyle, activity or
behavior, e.g. increased duration spent outdoors in natural light per day, reduction
in the amount of time spent on work involving near vision, change in subject's nutrition,
or any combination thereof; the recommendation to perform further tests on the subject,
e.g. further optometric exams, genetic testing, imaging one or both eyes of the individual,
screening for ocular disorders or conditions, or any combinations thereof.
[0104] Advantageously, the present invention uses the value of the sensitivity parameter
SRx of the subject, as a novel factor for determining a subject's risk of an onset
or progression of myopia over a timeframe. Specifically, the lack of sensitivity to
refraction, i.e. the value of the sensitivity parameter SRx, and/or the value of the
near and far refraction sensitivity parameters, provide a direct indication of a level
of image degradation that a subject can perceive, and which is directly related to
myopia onset or progression. As a result, the value of the sensitivity parameter SRx,
and additionally, the overlap degree of the subject's far and near comfort zones (based
on the subject's far refraction sensitivity and near refraction sensitivity) provide
additional factors which improves the predictive power of existing or new myopia prediction
models. Identification of the risk of myopia onset or progression for the subject
will allow early intervention to mitigate said risk.
EXAMPLES
[0105] The system 700 and methods 400, 500A, 500B, 600, herein disclosed are further illustrated
in the following examples, which are provided by way of illustration and are not intended
to be limiting the scope of the present disclosure.
[0106] The reference values or reference value range in the tables shown in FIGS. 8A to
9C provide exemplary preferred threshold values for the limits of sensitivity in each
category. For example, the limit in sensitivity of the sensitivity parameter SRx may
range from 0 to 0.15 D for the low-risk category, from 0.15 to 0.3 D for the medium-risk
category, and > 0.3 D for the high-risk category. Alternatively, the limits in the
sensitivity of the sensitivity parameter SRx may range from 0.1 to 0.2 D for the low-risk
category, from 0.2 to 0.4 D for the medium-risk category, and > 0.4 D for the high-risk
category. As indicated above, the reference values or reference value range for the
respective parameters, e.g. parameter relating to the subject's genetic history, dioptric
optical parameter, sensitivity parameter SRx, may be established on the basis of a
database comprising information of the risk of myopia onset or progression over the
timeframe, for individuals within a population sample.
Example 1. Pre-myopic subject and use of the sensitivity parameter SRx
[0107] FIG. 8A and 8B show tables of an example of a use condition of methods 400, 500A
and 500B, to determine the subject's risk of myopia onset or progression over a timeframe.
In this example, the subject may be an eight-year-old female. Referring to FIG. 8A,
it may be determined that the dioptric optical parameter of the subject is plano (indicated
by circles), e.g. subject is non-myopic, obtained based on an eye examination. Other
parameters may include the subject's genetic history and the parameter relating to
the subject's lifestyle, activity or behavior. In this example, the subject indicates
that she has one myopic parent (indicated by circles), and the subject's parameter
relating to lifestyle, activity or behavior, i.e. time spent outdoors per day, is
greater than 2 hours (indicated by circles). Said parameters may be entered into a
myopia onset predictive model as shown in FIG. 8A.
[0108] As may be seen from FIG. 8A, the subject has one factor, e.g. dioptric optical parameter,
that falls in the high-risk category, one factor, e.g. genetic history that falls
in the moderate-risk category, and one factor, e.g. lifestyle, activity or behavior
that falls in the low-risk category. The reference value or reference value range
within each of the low-, moderate- and high-risk categories may be established on
the basis of a database comprising information of the risk of myopia onset or progression
over the timeframe, for individuals within a population sample. Since each risk category,
e.g. plurality of predetermined risk categories includes one factor each, it may be
difficult to determine the subject's risk of the onset or progression of myopia over
the timeframe.
[0109] The subject's sensitivity parameter SRx may then be further determined. In this example,
the subject's sensitivity parameter SRx may be determined to have a value of 0.37
D. Referring to FIG. 8B, it may be seen that the subject's sensitivity parameter SRx
of 0.37 D falls within the high-risk category, and accordingly the high-risk category
now includes two factors, e.g. dioptric optical parameter and the sensitivity parameter
SRx, and the moderate- and low-risk categories each include one parameter. It may
then be determined that the subject has a high-risk of developing myopia within a
timeframe and appropriate options to mitigate said risk may be recommended. For example,
low dosage atropine eye drops may be prescribed, or the subject may be recommended
to increase the duration of time spent outdoors per day.
[0110] Alternatively, the subject's risk of myopia onset or progression over a timeframe
may be determined using method 500B which includes assigning a weight to each of the
low-, moderate- and high-risk categories. For example, the low-risk category may include
a weight of "
0", the moderate-risk category a weight of "
1" and the high-risk category a weight of "2" (step 520 of method 500). By performing
steps 522 and 526, a final score of 5, e.g.
final score = (0)(1) + (1)(1) + (2)(2), may be calculated. Step 528 may include comparing the final
score with at least one first predetermined threshold value. For example, the final
score may be compared against first predetermined threshold values for each of the
low-risk, moderate-risk, and high-risk categories, and at step 530, the subject's
risk of the onset or progression of myopia over the timeframe may be determined.
[0111] Alternatively, the subject's risk of myopia onset or progression over a timeframe
may be determined by calculating a value of a risk ratio, e.g. percentage according
to method 600, which is carried out using the at least one predictive model based
on a machine learning algorithm.
[0112] Therefore, as shown in FIG. 8B, it may be seen that advantageously, the use of the
sensitivity parameter SRx as an additional parameter within an existing myopia predictive
model improves the predictive power of the model.
Example 2. Myopic subject and use of the sensitivity parameter SRx and fifth parameter
[0113] FIG. 9A, 9B and 9C show tables of an example of a use condition of according to methods
300, 400, 500A and 500B, to determine the subject's risk of myopia onset or progression
over a timeframe. In this example, the subject may be a six-year-old male. Referring
to FIG. 9A, it may be determined that the dioptric optical parameter of the subject
ranges between 0.25-0.50 D (indicated by circles), e.g. subject has low hyperopia,
obtained based on an eye examination. Other parameters may include the subject's genetic
history and the parameter relating to the subject's lifestyle, activity or behavior.
In this example, the subject indicates that he does not have any myopic parents (indicated
by circles), and that the subject's time spent outdoors per day is less than 1 hour
(indicated by circles). Said parameters may be entered into a myopia onset predictive
model as shown in FIG. 9A.
[0114] As may be seen from FIG. 9A, the subject has one factor, e.g. lifestyle, activity
or behavior, that falls in the high-risk category, one factor, e.g. dioptric optical
parameter that falls in the moderate-risk category, and one factor, e.g. genetic history,
that falls in the low-risk category. Since each risk category of the plurality of
predetermined risk categories includes one factor each, it may be difficult to determine
the risk of the subject's onset or progression of myopia over the timeframe.
[0115] The subject's sensitivity parameter SRx may then be further determined. In this example,
the subject's sensitivity parameter SRx may be determined to have a value of ranging
between 0.15-0.3 D, which corresponds to the sensitivity parameter SRx of the moderate-risk
category. As shown in FIG. 9B, it may be determined that the subject has a moderate-risk
of myopia progression within the timeframe. However, there is still one factor which
falls in the high-risk category.
[0116] Thus, the subject's first and third parameters indicating a near and far refraction
of the subject may be obtained (step 310), and in this example may be measured as
+0.5 D and +2.0 D, respectively. At step 320, the second and fourth parameters indicating
a near and far refraction sensitivity of the subject may be determined, and in this
example may be calculated as being equal to 0.5 D and 0.2 D, respectively. Step 330
includes determining the far and near comfort ranges according to Equations 2 and
3, using subject specific coefficients
K_near and
K_far of 2. For example, the far and near comfort range may be determined as:

At step 340, the overlap degree between the far and near comfort ranges may be determined,
and at step 350, a value may be assigned to the fifth parameter which indicates the
overlap degree of the far and near comfort ranges. In this example, it may be seen
that there is no overlap between the far and comfort ranges, e.g. value assigned to
fifth parameter may be
"no overlap", which falls within the high-risk category, as shown in FIG. 9C.
[0117] Based on steps 510 and 512 of method 500A, it may thus be determined that the subject
has a high-risk of fast myopia progression within the timeframe, and appropriate options
to mitigate said risk may be recommended. In other words, with the addition parameter
indicating the overlap degree between the subject's near and far comfort ranges, which
is determined based on the subject's near and far refraction sensitivity, the predictive
power of the myopia model may be improved.
[0118] Alternatively, the subject's risk of myopia onset or progression over a timeframe
may be determined using method 500B which includes step 520 of assigning a weight
to each of the low-, moderate- and high-risk categories; step 522 of determining,
for each risk category of the plurality of predetermined risk categories, the number
of parameters among the at least one parameter, to which the respective risk category
has been assigned; step 524 of calculating, for each risk category of the plurality
of predetermined risk categories, a score by multiplying the weight assigned to the
respective risk category with the number of parameters, to which said risk category
has been assigned; step 526 of calculating, a final score by summing the scores calculated
for the plurality of predetermined risk categories; step 528 of comparing the final
score with at least one first predetermined threshold value; and step 530 of determining,
the subject's risk of the onset or progression of myopia over the timeframe based
on the final score.
[0119] Alternatively, the subject's risk of myopia onset or progression over a timeframe
may be determined by calculating a value of a risk ratio, e.g. percentage according
to method 600, which is carried out using predictive models based on a machine learning
algorithm.
[0120] Therefore, as shown in FIG. 9C, it may be seen that advantageously, the use of the
sensitivity parameter SRx and the fifth parameter indicating the overlap degree between
the subject's near and far comfort ranges as additional parameters in a myopia predictive
model improves the predictive power of the model. Alternatively, the fifth parameter
may be the sole or major determining factor in the myopia predictive model. For example,
the subject may be at a high-risk of fast myopia progression within the timeframe
if the fifth parameter falls within the high-risk category, even though the values
of the parameters in the other categories, e.g. genetic history, the parameter relating
to the subject's lifestyle, activity or behavior, the dioptric optical parameter and/or
the sensitivity parameter SRx may fall within the low-risk category.
Example 3. Myopia progression
[0121] In this example, the subject may be an eleven-year-old myopic male. The subject has
indicated that his prescription, e.g. dioptric optical parameters remains the same
as that in the previous year, e.g. stable refraction, but complains of intermittent
blurred vision after engaging in near work for long durations.
[0122] In this example, the optometrist (or the clinician) only has a few parameters, namely,
personal information about the subject, e.g. age and/or gender, and the rate of myopia
progression in the previous year (which is a weak indicator). However, the optometrist
may have access to the subject's sensitivity parameter SRx, which for the subject
was measured to be 0.52 D, e.g. based on a previous sensitivity parameter SRx, which
places the subject in the high-risk category, indicating that the subject, despite
stable refraction, will likely to be prone to fast myopia progression. The use of
the subject's sensitivity parameter SRx may thus provide an additional powerful parameter,
in particular, when the optometrist has limited information about the subject, to
improve the predictive power of the existing myopia predictive model.
[0123] While the disclosure has been particularly shown and described with reference to
specific embodiments, it should be understood by those skilled in the art that various
changes in form and detail may be made therein without departing from the spirit and
scope of the invention as defined by the appended claims. The scope of the invention
is thus indicated by the appended claims and all changes which come within the meaning
and range of equivalency of the claims are therefore intended to be embraced.